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Modeling Interactions between Speech Production and Perception: Speech Error Detection at Semantic and Phonological Levels and the Inner Speech Loop

机译:建模语音产生和知觉之间的相互作用:语义和语音层次上的语音错误检测以及内部语音循环

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Production and comprehension of speech are closely interwoven. For example, the ability to detect an error in one's own speech, halt speech production, and finally correct the error can be explained by assuming an inner speech loop which continuously compares the word representations induced by production to those induced by perception at various cognitive levels (e.g., conceptual, word, or phonological levels). Because spontaneous speech errors are relatively rare, a picture naming and halt paradigm can be used to evoke them. In this paradigm, picture presentation (target word initiation) is followed by an auditory stop signal (distractor word) for halting speech production. The current study seeks to understand the neural mechanisms governing self-detection of speech errors by developing a biologically inspired neural model of the inner speech loop. The neural model is based on the Neural Engineering Framework (NEF) and consists of a network of about 500,000 spiking neurons. In the first experiment we induce simulated speech errors semantically and phonologically. In the second experiment, we simulate a picture naming and halt task. Target-distractor word pairs were balanced with respect to variation of phonological and semantic similarity. The results of the first experiment show that speech errors are successfully detected by a monitoring component in the inner speech loop. The results of the second experiment show that the model correctly reproduces human behavioral data on the picture naming and halt task. In particular, the halting rate in the production of target words was lower for phonologically similar words than for semantically similar or fully dissimilar distractor words. We thus conclude that the neural architecture proposed here to model the inner speech loop reflects important interactions in production and perception at phonological and semantic levels.
机译:言语的产生和理解紧密地交织在一起。例如,可以通过假设内部语音循环来解释检测自己的语音错误,停止语音产生并最终纠正错误的能力,该语音循环会不断比较语音产生的词表示与各种认知水平上的感知引起的词表示(例如,概念,单词或语音水平)。由于自发的语音错误相对较少,因此可以使用图片命名和暂停范例来唤起它们。在这种范例中,图片呈现(目标词的启动)之后是听觉停止信号(干扰词),用于停止语音生成。当前的研究试图通过开发内部语音回路的生物学启发神经模型来理解控制语音错误自我检测的神经机制。该神经模型基于神经工程框架(NEF),由约500,000个尖峰神经元组成的网络组成。在第一个实验中,我们从语义和语音上诱发了模拟的语音错误。在第二个实验中,我们模拟图片命名和暂停任务。目标干扰词对在语音和语义相似度的变化方面是平衡的。第一个实验的结果表明,语音错误已通过内部语音循环中的监视组件成功检测到。第二个实验的结果表明,该模型正确地重现了有关图片命名和暂停任务的人类行为数据。特别地,语音相似的单词的目标单词停顿率低于语义相似或完全不同的干扰词。因此,我们得出的结论是,此处提出的用于模拟内部语音循环的神经体系结构反映了语音和语义层面在生成和感知中的重要交互作用。

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